Corpus ID: 211082740

Eigenvector Component Calculation Speedup over NumPy for High Performance Computing

@article{Dabhi2020EigenvectorCC,
  title={Eigenvector Component Calculation Speedup over NumPy for High Performance Computing},
  author={Shrey Dabhi and Manojkumar Somabhai Parmar},
  journal={ArXiv},
  year={2020},
  volume={abs/2002.04989}
}
  • Shrey Dabhi, Manojkumar Somabhai Parmar
  • Published in ArXiv 2020
  • Computer Science
  • Applications related to artificial intelligence, machine learning and system identification simulations essentially use eigenvectors. Calculating eigenvectors for very large matrices using conventional methods is compute intensive and renders the applications slow. Recently, Eigenvector-Eigenvalue Identity formula promising significant speed up was identified. We study the algorithmic implementation of the formula against the existing state-of-the-art algorithms and their implementations to… CONTINUE READING

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